EDIT: See note at bottom for more detail.
I am facing the same problem, and I found a solution that is slow. Maybe someone else has a solution for speeding up my findings. In my code, I have a table with three columns: Col1, Col2, Col3. Col1 is my record ID. Col2 is the name of my dynamic columns. Col3 is the value at that column. So if I wanted to represent a record with ID 1, two columns 2 and 3, and values at those columns: 4 and 5, I would have the following:
Col1, Col2, Col3
1, 2, 4
1, 3, 5
Then we pivot over column 2 and select the MAX (or MIN or AVG, doesn't matter since col2 and col3 combinations are unique) col3 in the pivot. In order to accomplish the pivot with a variable number of columns, we use dynamic SQL generation to generate our SQL. This works well for small input data (I believe the derived table inside the FROM clause of the dynamic SQL). Once your dataset gets large, the average function starts taking a long time to execute. A very long time. It looks like this starts at around 1000 rows, so maybe there's a hint or another method that makes this shorter.
As a note, since the values for Col2 and Col3 map 1:1, I also tried dynamically generating a SELECT statement like the following:
SELECT Col1,
CASE WHEN Col2 = '4' THEN Col3 END [4],
CASE WHEN Col2 = '5' THEN Col3 END [5],
CASE WHEN Col2 = '6' THEN Col3 END [6], -- ... these were dyanmically generated
FROM #example
GROUP BY Col1
This was just as slow for my dataset. Your milege may vary. Here is a full example of how this works written for SQL Server (2005+ should run this).
--DROP TABLE #example
CREATE TABLE #example
(
Col1 INT,
Col2 INT,
Col3 INT
)
INSERT INTO #example VALUES (2,4,10)
INSERT INTO #example VALUES (2,5,20)
INSERT INTO #example VALUES (2,6,30)
INSERT INTO #example VALUES (2,7,40)
INSERT INTO #example VALUES (2,8,50)
INSERT INTO #example VALUES (3,4,11)
INSERT INTO #example VALUES (3,5,22)
INSERT INTO #example VALUES (3,6,33)
INSERT INTO #example VALUES (3,7,44)
INSERT INTO #example VALUES (3,8,55)
DECLARE @columns VARCHAR(100)
SET @columns = ''
SELECT @columns = @columns + '[' + CAST(Col2 AS VARCHAR(10)) + '],'
FROM (SELECT DISTINCT Col2 FROM #Example) a
SELECT @columns = SUBSTRING(@columns, 0, LEN(@columns) )
DECLARE @dsql NVARCHAR(MAX)
SET @dsql = '
select Col1, ' + @columns + '
from
(select Col1, Col2, Col3 FROM #example e) a
PIVOT
(
MAX(Col3)
FOR Col2 IN (' + @columns + ')
) p'
print @dsql
EXEC sp_executesql @dsql
EDIT: Because of the unique situation in which I am doing this, I managed to get my speed-up using two tables (one with the entities and another with the attribute-value pairs), and creating a clustered index on the attribute-value pairs which includes all columns (ID, Attribute, Value). I recommend you work around this approach another way if you need fast inserts, large numbers of columns, many data rows, etc.. I have some known certainties about the size and growth rates of my data, and myy solution is suited to my scope.
There are many other solutions which are better suited to solve this problem. For example, if you need fast inserts and single-record reads (or slow reads don't matter) you should consider packing an XML string into a field and serializing/deserializing in the database consumer. If you need ultra-fast writes, ultra-fast reads, and data columns are very rarely added then you may consider altering your table. This is a bad solution in most practice, but may fit some problems. If you have columns that change frequently enough, but you also need fast reads and writes are not an issue then my solution may work for you up to a certain dataset size.
PIVOT
. Others do not. Building dynamic SQL is also different across platforms.